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      Descriptions of issues and comments for predicting issue success in software projects

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          Abstract

          Software development tasks must be performed successfully to achieve software quality and customer satisfaction. Knowing whether software tasks are likely to fail is essential to ensure the success of software projects. Issue Tracking Systems store information of software tasks (issues) and comments, which can be useful to predict issue success; however; almost no research on this topic exists. This work studies the usefulness of textual descriptions of issues and comments for predicting whether issues will be resolved successfully or not. Issues and comments of 588 software projects were extracted from four popular Issue Tracking Systems. Seven machine learning classifiers were trained on 30k issues and more than 120k comments, and more than 6000 experiments were performed to predict the success of three types of issues: bugs, improvements and new features. The results provided evidence that descriptions of issues and comments are useful for predicting issue success with more than 85% of accuracy and precision, and that the predictions of issue success vary over time. Words related to software development were particularly relevant for predicting issue success. Other communication aspects and their relationship to the success of software projects must be researched in detail using data from software tools.

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          Author and article information

          Journal
          01 June 2020
          Article
          10.1016/j.jss.2020.110663
          2006.01358
          b60fed50-dae8-4c75-9235-23dfcd52c982

          http://creativecommons.org/licenses/by-nc-sa/4.0/

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          Journal of Systems and Software, Vol. 168, 2020, 110663, ISSN 0164-1212
          65 pages; 15 figures
          cs.SE

          Software engineering
          Software engineering

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